Interpretable domain adaptation transformer: a transfer learning method for fault diagnosis of rotating machinery

Dongdong Liu, Lingli Cui, Gang Wang, Weidong Cheng
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Abstract

Domain adaptation-based transfer learning methods have been widely investigated in fault diagnosis of rotating machinery, but their basic convolution or recurrent structure is subject to poor global feature representation ability, which hinders the learning of domain-irrelevant modulation information. In addition, the “black box” nature of deep learning models limits their applications in high risk-sensitive scenarios. In this paper, an interpretable domain adaptation transformer (IDAT) is proposed for the transferable fault diagnosis of rotating machinery. First, a multi-layer domain adaptation transformer framework is proposed, which can capture the global information that is crucial for learning the modulation information of different domains, and meanwhile reduce the feature distribution discrepancy. Second, an ensemble attention weight is applied to enable the transfer learning framework to be interpretable, which is implemented by averaging the integral values of the multi-head attention maps along the key direction. In addition, the raw vibration signals are embedded as the input of the model, which provides an end-to-end fault diagnosis. The proposed IDAT is tested by various cross-condition and cross-machine bearing fault diagnosis tasks, and results confirm the advantages of the method.
可解释域适应变压器:旋转机械故障诊断的迁移学习方法
基于领域适应的迁移学习方法已在旋转机械故障诊断中得到广泛研究,但其基本的卷积或递归结构存在全局特征表示能力差的问题,这阻碍了对与领域无关的调制信息的学习。此外,深度学习模型的 "黑箱 "特性也限制了其在高风险敏感场景中的应用。本文提出了一种可解释域自适应变换器(IDAT),用于旋转机械的可转移故障诊断。首先,提出了多层域自适应变换器框架,该框架可以捕捉对学习不同域的调制信息至关重要的全局信息,同时减少特征分布差异。其次,为了使迁移学习框架具有可解释性,应用了集合注意力权重,该权重是通过平均多头注意力图沿关键方向的积分值来实现的。此外,原始振动信号被嵌入作为模型的输入,从而提供端到端的故障诊断。提出的 IDAT 通过各种跨条件和跨机器轴承故障诊断任务进行了测试,结果证实了该方法的优势。
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